基于集成混合算法的假数据分析与检测

Palagati Bhanu Prakash Reddy, M. K. Reddy, G. Reddy, K. Mehata
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引用次数: 16

摘要

虚假数据检测是近年来亟待解决的问题,在这一领域进行了大量的研究。由于其对读者的严重影响。研究人员、政府和私人机构共同努力解决这个问题。本文提出了一种利用多项投票算法进行虚假数据检测的混合方法。该算法在多个假新闻数据集上进行了测试,结果准确率达到94%,这是机器学习领域的基准,其他算法的范围在82%到88%之间。这里使用的算法列表如下:朴素贝叶斯,随机森林,决策树,支持向量机,K近邻。这些算法都使用训练数据作为词包模型,并使用计数矢量器建立词包模型。实验数据是从Kaggle数据世界收集的。Python被用作验证和验证结果的语言。Tableau被用作可视化工具。实现是使用默认算法值进行的。
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Fake Data Analysis and Detection Using Ensembled Hybrid Algorithm
Fake data detection is the most important problem to be addressed in the recent years, there is lot of research going on in this field. Because of its serious impacts on the readers. researchers, government and private agencies working together to solve the issue. This paper represents a hybrid approach for fake data detection using the multinomial voting algorithm. This algorithm was tested with multiple fake news dataset which resulted in an accuracy score of 94 percent which is a benchmark in the machine learning field where the other algorithms are at a range of 82 to 88 percent. The list of algorithms that have been used here is as follows Naive Bayes, Random Forest, Decision Tree, Support Vector Machine, K Nearest Neighbors. All these algorithms use training data as the bag of words model which was created using Count Vectorizer. Experimental data has collected from the Kaggle data world. Python is used as a language to verify and validate the results. Tableau is used as a visualization tool. Implementation is carried out using default algorithm values.
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